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Machine learning-based classification of the movements of children with profound or severe intellectual or multiple disabilities using environment data features

Communication interventions have broadened from dialogical meaning-making, assessment approaches, to remote-controlled interactive objects. Yet, interpretation of the mostly pre-or protosymbolic, distinctive, and idiosyncratic movements of children with intellectual disabilities (IDs) or profound in...

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Autores principales: Herbuela, Von Ralph Dane Marquez, Karita, Tomonori, Furukawa, Yoshiya, Wada, Yoshinori, Toya, Akihiro, Senba, Shuichiro, Onishi, Eiko, Saeki, Tatsuo
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9246124/
https://www.ncbi.nlm.nih.gov/pubmed/35771797
http://dx.doi.org/10.1371/journal.pone.0269472
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author Herbuela, Von Ralph Dane Marquez
Karita, Tomonori
Furukawa, Yoshiya
Wada, Yoshinori
Toya, Akihiro
Senba, Shuichiro
Onishi, Eiko
Saeki, Tatsuo
author_facet Herbuela, Von Ralph Dane Marquez
Karita, Tomonori
Furukawa, Yoshiya
Wada, Yoshinori
Toya, Akihiro
Senba, Shuichiro
Onishi, Eiko
Saeki, Tatsuo
author_sort Herbuela, Von Ralph Dane Marquez
collection PubMed
description Communication interventions have broadened from dialogical meaning-making, assessment approaches, to remote-controlled interactive objects. Yet, interpretation of the mostly pre-or protosymbolic, distinctive, and idiosyncratic movements of children with intellectual disabilities (IDs) or profound intellectual and multiple disabilities (PIMD) using computer-based assistive technology (AT), machine learning (ML), and environment data (ED: location, weather indices and time) remain insufficiently unexplored. We introduce a novel behavior inference computer-based communication-aid AT system structured on machine learning (ML) framework to interpret the movements of children with PIMD/IDs using ED. To establish a stable system, our study aimed to train, cross-validate (10-fold), test and compare the classification accuracy performance of ML classifiers (eXtreme gradient boosting [XGB], support vector machine [SVM], random forest [RF], and neural network [NN]) on classifying the 676 movements to 2, 3, or 7 behavior outcome classes using our proposed dataset recalibration (adding ED to movement datasets) with or without Boruta feature selection (53 child characteristics and movements, and ED-related features). Natural-child-caregiver-dyadic interactions observed in 105 single-dyad video-recorded (30-hour) sessions targeted caregiver-interpreted facial, body, and limb movements of 20 8-to 16-year-old children with PIMD/IDs and simultaneously app-and-sensor-collected ED. Classification accuracy variances and the influences of and the interaction among recalibrated dataset, feature selection, classifiers, and classes on the pooled classification accuracy rates were evaluated using three-way ANOVA. Results revealed that Boruta and NN-trained dataset in class 2 and the non-Boruta SVM-trained dataset in class 3 had >76% accuracy rates. Statistically significant effects indicating high classification rates (>60%) were found among movement datasets: with ED, non-Boruta, class 3, SVM, RF, and NN. Similar trends (>69%) were found in class 2, NN, Boruta-trained movement dataset with ED, and SVM and RF, and non-Boruta-trained movement dataset with ED in class 3. These results support our hypotheses that adding environment data to movement datasets, selecting important features using Boruta, using NN, SVM and RF classifiers, and classifying movements to 2 and 3 behavior outcomes can provide >73.3% accuracy rates, a promising performance for a stable ML-based behavior inference communication-aid AT system for children with PIMD/IDs.
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spelling pubmed-92461242022-07-01 Machine learning-based classification of the movements of children with profound or severe intellectual or multiple disabilities using environment data features Herbuela, Von Ralph Dane Marquez Karita, Tomonori Furukawa, Yoshiya Wada, Yoshinori Toya, Akihiro Senba, Shuichiro Onishi, Eiko Saeki, Tatsuo PLoS One Research Article Communication interventions have broadened from dialogical meaning-making, assessment approaches, to remote-controlled interactive objects. Yet, interpretation of the mostly pre-or protosymbolic, distinctive, and idiosyncratic movements of children with intellectual disabilities (IDs) or profound intellectual and multiple disabilities (PIMD) using computer-based assistive technology (AT), machine learning (ML), and environment data (ED: location, weather indices and time) remain insufficiently unexplored. We introduce a novel behavior inference computer-based communication-aid AT system structured on machine learning (ML) framework to interpret the movements of children with PIMD/IDs using ED. To establish a stable system, our study aimed to train, cross-validate (10-fold), test and compare the classification accuracy performance of ML classifiers (eXtreme gradient boosting [XGB], support vector machine [SVM], random forest [RF], and neural network [NN]) on classifying the 676 movements to 2, 3, or 7 behavior outcome classes using our proposed dataset recalibration (adding ED to movement datasets) with or without Boruta feature selection (53 child characteristics and movements, and ED-related features). Natural-child-caregiver-dyadic interactions observed in 105 single-dyad video-recorded (30-hour) sessions targeted caregiver-interpreted facial, body, and limb movements of 20 8-to 16-year-old children with PIMD/IDs and simultaneously app-and-sensor-collected ED. Classification accuracy variances and the influences of and the interaction among recalibrated dataset, feature selection, classifiers, and classes on the pooled classification accuracy rates were evaluated using three-way ANOVA. Results revealed that Boruta and NN-trained dataset in class 2 and the non-Boruta SVM-trained dataset in class 3 had >76% accuracy rates. Statistically significant effects indicating high classification rates (>60%) were found among movement datasets: with ED, non-Boruta, class 3, SVM, RF, and NN. Similar trends (>69%) were found in class 2, NN, Boruta-trained movement dataset with ED, and SVM and RF, and non-Boruta-trained movement dataset with ED in class 3. These results support our hypotheses that adding environment data to movement datasets, selecting important features using Boruta, using NN, SVM and RF classifiers, and classifying movements to 2 and 3 behavior outcomes can provide >73.3% accuracy rates, a promising performance for a stable ML-based behavior inference communication-aid AT system for children with PIMD/IDs. Public Library of Science 2022-06-30 /pmc/articles/PMC9246124/ /pubmed/35771797 http://dx.doi.org/10.1371/journal.pone.0269472 Text en © 2022 Herbuela et al https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Herbuela, Von Ralph Dane Marquez
Karita, Tomonori
Furukawa, Yoshiya
Wada, Yoshinori
Toya, Akihiro
Senba, Shuichiro
Onishi, Eiko
Saeki, Tatsuo
Machine learning-based classification of the movements of children with profound or severe intellectual or multiple disabilities using environment data features
title Machine learning-based classification of the movements of children with profound or severe intellectual or multiple disabilities using environment data features
title_full Machine learning-based classification of the movements of children with profound or severe intellectual or multiple disabilities using environment data features
title_fullStr Machine learning-based classification of the movements of children with profound or severe intellectual or multiple disabilities using environment data features
title_full_unstemmed Machine learning-based classification of the movements of children with profound or severe intellectual or multiple disabilities using environment data features
title_short Machine learning-based classification of the movements of children with profound or severe intellectual or multiple disabilities using environment data features
title_sort machine learning-based classification of the movements of children with profound or severe intellectual or multiple disabilities using environment data features
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9246124/
https://www.ncbi.nlm.nih.gov/pubmed/35771797
http://dx.doi.org/10.1371/journal.pone.0269472
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